Hierarchical EM algorithm for estimating the parameters of Mixture of Bivariate Generalized Exponential distributions

07/14/2017
by   Arabin Kumar Dey, et al.
0

This paper provides a mixture modeling framework using the bivariate generalized exponential distribution. Hierarchical EM algorithm is developed for finding the estimates of the parameters. The algorithm takes very large sample size to work as it contains many stages of approximation.

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